A model for fluvial bedrock incision by impacting suspended and bed load sediment

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Click Here for Full Article JOURNAL OF GEOPHYSICAL RESEARCH, VOL. 113,, doi:10.1029/2007jf000915, 2008 A model for fluvial bedrock incision by impacting suspended and bed load sediment Michael P. Lamb, 1 William E. Dietrich, 1 and Leonard S. Sklar 2 Received 24 September 2007; revised 5 May 2008; accepted 23 July 2008; published 17 September 2008. [1] A mechanistic model is derived for the rate of fluvial erosion into bedrock by abrasion from uniform size particles that impact the bed during transport in both bed and suspended load. The erosion rate is equated to the product of the impact rate, the mass loss per particle impact, and a bed coverage term. Unlike previous models that consider only bed load, the impact rate is not assumed to tend to zero as the shear velocity approaches the threshold for suspension. Instead, a given sediment supply is distributed between the bed and suspended load by using formulas for the bed load layer height, bed load velocity, logarithmic fluid velocity profile, and Rouse sediment concentration profile. It is proposed that the impact rate scales linearly with the product of the near-bed sediment concentration and the impact velocity and that particles impact the bed because of gravitational settling and advection by turbulent eddies. Results suggest, unlike models that consider only bed load, that the erosion rate increases with increasing transport stage (for a given relative sediment supply), even for transport stages that exceed the onset of suspension. In addition, erosion can occur if the supply of sediment exceeds the bed load transport capacity because a portion of the sediment load is transported in suspension. These results have implications for predicting erosion rates and channel morphology, especially in rivers with fine sediment, steep channel-bed slopes, and large flood events. Citation: Lamb, M. P., W. E. Dietrich, and L. S. Sklar (2008), A model for fluvial bedrock incision by impacting suspended and bed load sediment, J. Geophys. Res., 113,, doi:10.1029/2007jf000915. 1. Introduction [2] River incision into bedrock is one of the fundamental drivers of landscape evolution and propagates climatic and tectonic signals throughout drainage networks. Incision into rock occurs relatively slowly and during large infrequent events making it difficult to investigate mechanistically. To characterize river incision geomorphologists typically have relied on reach-scale rules, for example, by setting the rate of erosion to be a function of boundary shear stress [Howard and Kerby, 1983] or stream power [Seidl and Dietrich, 1992; Howard et al., 1994; Seidl et al., 1994; Whipple and Tucker, 1999]. These models are limited in application, however, because they mask the physical mechanisms by which bedrock erosion occurs. More realistic model predictions require advances in our quantitative understanding of erosion processes [e.g., Dietrich et al., 2003; Whipple, 2004]. [3] One such model proposed by Sklar and Dietrich [2004] explicitly models the wear of bedrock by bed load particles (referred to as the saltation-abrasion model herein). Application of the saltation-abrasion model and related 1 Department of Earth and Planetary Science, University of California, Berkeley, California, USA. 2 Department of Geosciences, San Francisco State University, San Francisco, California, USA. Copyright 2008 by the American Geophysical Union. 0148-0227/08/2007JF000915$09.00 efforts have led to significant insights into the controls of bedrock river morphology including, channel slope [Sklar and Dietrich, 2006; Gasparini et al., 2007], knickpoints [e.g., Chatanantavet and Parker, 2005; Wobus et al., 2006; Crosby et al., 2007], slot canyons [Carter and Anderson, 2006; Johnson and Whipple, 2007], and channel width [Finnegan et al., 2007; Nelson and Seminara, 2007; Turowski et al., 2008]. Nonetheless, the saltation-abrasion model is incomplete because it neglects other important mechanisms for riverbed erosion such as cavitation, plucking of jointed rock and abrasion by suspended sediment [Whipple et al., 2000]. Abrasion by suspended sediment in particular has been argued to be an important or dominant erosion mechanism in some streams [Hancock et al., 1998; Whipple et al., 2000; Hartshorn et al., 2002] owing in part to the frequent occurrence of polished bedrock surfaces, flutes, potholes, and undulating canyon walls. [4] In this paper, we investigate erosion by suspended particles by deriving a total load erosion model, which expands on the saltation-abrasion model of Sklar and Dietrich [2004] to include suspended particles. Cavitation and plucking of jointed rock are not investigated here. In section 2, the saltation-abrasion model is reviewed briefly and the assumption that the impact rate is zero at the onset of suspension is discussed. In section 3, we propose that suspended particles do interact with the bed and that the impact rate scales with the product of the near-bed sediment concentration and the particle impact velocity. The near-bed 1of18

sediment concentration is found by partitioning a given sediment supply between the bed and suspended load. In section 4, commonly used formulas are adopted to solve the model, including the Rouse concentration profile to describe the vertical distribution of suspended sediment. In section 5, predictions of the total load erosion model are shown and compared to the saltation-abrasion model for different values of transport stage, sediment supply, particle size, and channel slope. Finally, the entrainment capacity, viscous damping of impacts, and implications for natural streams are discussed in section 6. 2. Saltation-Abrasion Model [5] Sklar and Dietrich [2004], following the work of Foley [1980], Beaumont et al. [1992], Tucker and Slingerland [1994], and others, present a model for fluvial incision of bedrock by saltating sediment, which is briefly reviewed here. The saltation-abrasion model was formulated by neglecting abrasion by all modes of sediment transport except saltation. A planar bed, rectangular channel cross section, and uniform size sediment are assumed. The model assumes that the net effects of spatial heterogeneity in hydraulics, rock strength, and sediment supply can be adequately represented in terms of a unit bed area. [6] The rate of vertical erosion E is defined as the product of the average volume of rock detached per particle-bedrock impact V i, the rate of particle impacts per unit bed area per unit time I r, and the fraction of exposed bedrock on the river bed F e E ¼ V i I r F e : The volume of eroded bedrock per particle impact V i is scaled by the kinetic energy of the particle impact V i ¼ 1 2 ð1þ V p r s w 2 i e v ; ð2þ where V p, r s, and w i are the particle volume, density, and impact velocity normal to the bed. A threshold kinetic energy needed to cause erosion is not included on the basis of results from abrasion mill experiments [Sklar and Dietrich, 2001]. The kinetic energy required to cause erosion of a unit volume of bedrock e v (units of energy per volume) depends on the capacity of the rock to store energy elastically e v ¼ k v s 2 T 2Y ; where s T is the tensile yield strength and Y is Young s modulus of elasticity of the bedrock. The dimensionless coefficient k v was found to be of the order 10 6 [Sklar and Dietrich, 2006]. [7] The rate of particle-bedrock impacts per unit bed area I r is given by q b I r ¼ ; V p L b where q b is the volumetric sediment flux per unit channel width traveling as bed load and L b is the saltation hop length. Note that q b in this paper is the same as q b /r s defined by Sklar and Dietrich [2004], since they defined q b to be a mass flux rather than a volumetric flux. ð3þ ð4þ [8] Following the hypothesis of Gilbert [1877], the fraction of the river bed that is exposed bedrock and not covered with alluvium F e is assumed to vary as F e ¼ 1 q b ; ð5þ q bc where q bc is the volumetric bed load sediment transport capacity per unit channel width [Sklar et al., 1996; Slingerland et al., 1997; Sklar and Dietrich, 2004]. This linear relationship has yet to be tested in nature, and others have argued that an exponential relationship is more appropriate [Turowski et al., 2007]. Herein we use equation (5) to simplify later comparison of the saltationabrasion model with the total load erosion model. Equation (5) must be true in end-member cases at steady state. Where the supply of sediment exceeds the transport capacity, sediment is deposited on the bed and the bedrock is protected from erosion. This is typically the case in alluvial, transport-limited rivers and many formulas exist to predict the sediment transport (and hence the transport capacity) under such conditions [e.g., Fernandez Luque and van Beek, 1976]. On the other hand, if the sediment supply is zero, the river bed will be free of cover. In this case, however, no erosion will occur because there are no particles to impact the bed. [9] Combining equations (1) (5) yields the composite expression of the saltation-abrasion model E ¼ r sq b w 2 i Y L b k v s 2 T 1 q b : ð6þ q bc [10] Most important for the present study is evaluation of the saltation hop length L b. Sklar and Dietrich [2004] compiled data from numerous experimental and theoretical studies on particle saltation [Francis, 1973; Abbott and Francis, 1977; Wiberg and Smith, 1985; Sekine and Kikkawa, 1992; Lee and Hsu, 1994; Nino et al., 1994; Hu and Hui, 1996] and found the best fit relationship to be L b D ¼ 8:0 t 0:88 * 1 ; ð7þ t *c where D is the particle diameter and t * /t *c is the transport stage. The nondimensional bed stress or Shields stress is given by t * ¼ u2 * RgD ; where R =(r s r f )/r f is the submerged specific density of the sediment, r f is the density of the fluid, g is the acceleration due to gravity, and u * is the bed shear velocity. The critical value of the Shields stress (t *c ) is the value of t * at the threshold of particle motion [Shields, 1936]. [11] In the saltation-abrasion model, particle-hop length is assumed to be infinite for particles transported in suspension. A flow is typically considered competent to suspend sediment if u * =w st 1; ð8þ ð9þ 2of18

where w st is the terminal settling velocity of the sediment [Bagnold, 1966]. Therefore, Sklar and Dietrich [2004] modified equation (7) to be L b D ¼ 8:0 t * =t *c 1 0:88 qffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffi ð10þ 2 1 u * =w st and the erosion rate (equation (6)) is zero if u * /w st 1. [12] The experimental particle trajectory data used to calibrate equation (10) does not extend into the regime u * /w st 1, and thus the validity of equation (10) over equation (7) cannot be verified. We hypothesize that suspended sediment does contribute to bedrock erosion due to particle-bedrock impacts. In the next section, we develop this hypothesis and present a model for bedrock erosion from suspended and bed load sediment. 3. Total Load Erosion Model [13] Our model development follows the assumptions and limitations of previous work on erosion by bed load discussed above. In particular, our model considers incision into a flat bed of unit area by impacts of single sized particles. The model is based on the concept that suspended sediment actually is not held in a fluid indefinitely. Instead, particles are continuously falling through the fluid due to gravitational settling and are advected toward the bed due to turbulence. Where u * /w st 1, sediment travels both in suspension and bed load [Bagnold, 1966; van Rijn, 1984; Nino et al., 2003]. Therefore, the incision model is developed to include impacts by both bed load and suspended particles (i.e., the total load) under a wide range of conditions including u * /w st 1. 3.1. Settling Flux [14] During conditions of suspended sediment transport (i.e., u * /w st 1), particles do impact and interchange with the bed. Particles are entrained from the bed by coherent flow structures, which produce bursts of upward moving fluid [Grass, 1970; Jackson, 1976; Sumer and Deigaard, 1981; Nelson et al., 1995; Bennett et al., 1998]. As these structures dissipate, particles tend to settle toward the bed at a rate near their settling velocity in still water [e.g., Sumer and Deigaard, 1981; Ninto and Garcia, 1996]. This gravitational settling results in a volumetric flux per unit area of sediment toward the bed given by f s ¼ c b w s ; ð11þ where c b is the near-bed volumetric sediment concentration and w s is the gravitational settling velocity of the sediment (which can be less than w st ). Despite this downward sediment flux, an equilibrium concentration of particles can be attained because there is a dynamic balance between the upward and downward fluxes of particles [Rouse, 1937; Smith and McLean, 1977; Parker, 1978; García and Parker, 1991; Bennett et al., 1998]. [15] This concept is well illustrated in the experiments of Einstein [1968] in which a recirculating flume was used to create a steady, uniform flow over an open framework and immobile gravel bed. The flow was highly turbulent and capable of suspending the silt that was introduced into the flume (u * /w st ranged from 74 to 7.2 10 3 ). Despite the fact that u * /w st 1, the suspended particles did indeed impact the bed, as the turbid flows eventually clarified, and a steady state concentration profile was not attained. This was because the suspended silt settled through the gravel on the flume bed and the downward flux of sediment was not balanced by a commensurate entrainment flux from the bed. 3.2. Particle-Bed Impacts [16] Few experimental studies have traced the flow paths of individual suspended particles, which, along with the stochastic nature of such trajectories, makes it difficult to directly formulate an effective particle hop length for suspension. Since classic suspension theory is based in terms of sediment concentration [Rouse, 1937], it is useful to formulate the impact rate as a function of sediment concentration instead of hop length. Following the above arguments and equation (11), the rate of particle impacts per unit bed area can be expected on average to be proportional to the product of the near-bed sediment concentration and the particle velocity normal to the bed, I r ¼ A 1c b w i V p : ð12þ The impact velocity normal to the bed (w i ) is used here as a measure of the particle velocity instead of the gravitational settling velocity (w s, as in equation (11)) because w s might not be normal to the bed and impacts also can occur because of turbulent fluctuations (discussed in section 4.4). The coefficient A 1 < 1 accounts for the fact that some of the particles near the bed are advected upward because of lift forces. [17] Equation (12) is not specific to suspension and also holds for bed load. For example, the downstream flux of bed load sediment can be written as q b ¼ c b U b H b ; ð13þ where U b is the vertically averaged stream-wise particle velocity and c b is the vertically averaged sediment concentration within the bed load layer of height H b. The average bed load velocity can be scaled as U b ¼ L b t i A 2w s L b H b ; ð14þ where t i is the timescale between bed impacts for an individual particle. A 2 < 1 accounts for the fact that the average fall velocity within the bed load layer might be less than the near-bed settling velocity, and that the total time between impacts should also include the particle ejection or risetime as well as the fall time. For example, Sklar and Dietrich [2004] suggest A 2 1/3. Combination of equations (4), (13), and (14) results in I r ¼ A 2c b w s V p ; ð15þ which is the same as equation (12) provided that A 2 w s = A 1 w i. 3of18

3.3. Sediment Supply [18] In alluvial rivers with an unlimited supply of sediment on the bed and a steady state concentration profile, the settling flux of sediment near the bed f s is equal to the entrainment capacity of the flow (per unit bed area) F e, which can be written as f e ¼ aw s ; ð16þ where a is a nondimensional sediment entrainment parameter (which is a function of u * /w st [e.g., García and Parker, 1991]). Thus, where f e = f s, the near bed sediment concentration c b can be determined directly from the hydraulics and sediment size because combination of equations (11) and (16) results in a = c b. This is not the case in bedrock rivers. [19] For supply limited conditions typical of bedrock rivers, the concentration of particles in suspension (and therefore c b ) is not dependent on the entrainment capacity (i.e., a > c b ) and instead is determined by the sediment supply from the bed, banks, and upstream. By continuity q s ¼ Z H H b cudz ¼ c b UHc; ð17þ where q s is the volumetric flux of sediment per unit channel width traveling in suspension, c and u are the depthdependent concentration and downstream flow velocity per unit channel width averaged over turbulent fluctuations, U is the depth-averaged flow velocity in the downstream direction, H is the flow depth, z is the coordinate perpendicular to the river bed, and 0 c 1 is the integral that describes the vertical structure of velocity and concentration. In equation (17), it is assumed that the average stream-wise particle velocities are equal to the fluid velocities, as is typical for suspended sediment [e.g., McLean, 1992]. [20] To evaluate the impact rate given by equation (12), the near-bed sediment concentration must be known. Here, we seek an expression for the near-bed concentration by partitioning the supplied sediment flux into bed and suspended load. To simplify matching the concentration profile between the bed load and the suspended sediment above, we assume that within the bed load layer (z H b ) sediment is well mixed [e.g., McLean, 1992] with a concentration of c b (Figure 1). Equations (13) and (17) can be summed and solved for c b as c b ¼ q UHc þ U b H b ; ð18þ where q is the total volumetric flux of sediment traveling as both bed and suspended load per unit width, which is equivalent to the total sediment supply (per unit width) in the supply limited conditions considered here. Thus, inclusion of suspended sediment (rather than considering only bed load) reduces the near-bed sediment concentration and therefore the rate of impacts for a given sediment supply. Equation (18), however, predicts a finite near-bed sediment concentration for all flow conditions. Figure 1. Schematic showing vertical profiles of sediment concentration c (equation (26)) and velocity u (equation (21)) for the conditions of the Eel River (Table 1) and for (a) 60-mm gravel and (b) 1-mm sand. Also shown are the calculated heights of the bed load layer H b (equation (25)), weighted average particle fall heights H f (equation (32)), flow depth H (Table 1), and the nearbed sediment concentration c b (equation (18)). 3.4. Composite Expression for the Total Load Erosion Model [21] Substituting equations (2), (3), (5), (12), and (18) into equation (1) yields the combined model for erosion by bed and suspended sediment E ¼ A 1r s Y k v s 2 T qw 3 i 1 q b ; ð19þ ðuhc þ U b H b Þ q bc where q b is found from equations (13) and (18) to be U b H b q b ¼ q : ð20þ UHc þ U b H b 4. Empirical Expressions and Calculation Procedure [22] Following Sklar and Dietrich [2004], the total load erosion model is explored here by holding some variables to constant values typical of a reference field site, the South 4of18

Table 1. Model Input and Output Values for Representative Field Case: South Fork Eel River, California Parameter Value Channel slope, S 0.0053 Channel width, W 18 m Sediment supply, q s 8.9 10 4 m 2 /s Water discharge, q w 2.1 m 2 /s Flow velocity, U 2.2 m/s Flow depth, H 0.95 m Shear velocity, u * 0.22 m/s Rock tensile strength, s T 7MPa Young s elastic modulus, Y 5.0 10 4 MPa Rock resistance parameter, k v 1.0 10 6 Critical Shields stress, t * c 0.03 Sediment density, r s 2650 kg/m 3 Water density, r f 1000 kg/m 3 Kinematic viscosity of water, n 10 6 m 2 /s Sediment size, D 60 mm, 1 mm Transport stage, t * /t * c 1.7, 102 Particle fall height, H f 79 mm, 38 mm Terminal settling velocity, w st 0.98 m/s, 0.13 m/s Bed load velocity, U b 1.26 m/s, 2.2 m/s Bed load concentration, c b 0.0089, 0.0151 Bed load layer height, H b 72.3 mm, 14.5 mm Bed load transport capacity, q bc 1.0 10 3 m 2 /s, 3.8 10 3 m 2 /s Erosion rate, E 31 mm/a, 10 mm/a Fork Eel River, California, USA [Seidl and Dietrich, 1992; Howard, 1998]. As shown in Table 1, the characteristic sediment size and supply is set to D = 60 mm and q =8.9 10 4 m 3 /s (see Sklar [2003] for details) on the basis of the average landscape lowering rate of 0.9 mm/a (where a is years) [Merritts and Bull, 1989]. The representative discharge is 39.1 m 3 /s, which has an exceedence probability of 0.013 and a transport stage of t * /t *c = 1.7 [Sklar and Dietrich, 2004]. Given this transport stage, the representative flow depth is found to be H = 0.95 m assuming t *c = 0.03 (Table 1). [23] To better show the effects of suspension, we also consider 1-mm sand in addition to the 60-mm gravel. Note that our model is formulated in terms of single sized particles that travel in both suspended load and bed load. A model incorporating multiple particle sizes interacting and impacting the bed at the same time is not attempted here. Thus, the following calculations assume that the total load is composed either exclusively of 60-mm gravel or exclusively 1-mm sand. For the later case, the hydraulic and geometric conditions are set to the same representative values used for D = 60 mm for purposes of comparison. In particular, with an equivalent representative discharge and flow depth, the transport stage for the 1-mm sand is found to be t * /t *c = 102 (Table 1). For simplicity, we use a constant value of t *c = 0.03 throughout, although a particle Reynolds number or relative roughness dependency could be explored in the future [Buffington and Montgomery, 1997; Lamb et al., 2008]. [24] To solve equation (19), expressions for the flow velocity, bed load transport capacity, bed load layer height and velocity, sediment concentration, and impact velocity are needed. Relatively simple and commonly used formulas for these variables are employed here. 4.1. Flow Velocity [25] For turbulent boundary layer flow in a channel, the downstream velocity can be calculated as u ¼ u * k ln z ; ð21þ where z 0 is a function of the boundary roughness and k is von Karman s constant (0.41) (Figure 1). The shear velocity is calculated from u * =(gh sin q) 1/2, where q is the channel-bed slope angle. Strictly speaking, equation (21) is only applicable to the lower 20% of the water column, and an adjustment to the eddy viscosity could be made for the upper portion of the flow [e.g., Coles, 1956; Gelfenbaum and Smith, 1986]. Modifications to the eddy viscosity could also be made because of stratification and form roughness [Vanoni, 1946; McLean, 1992; Wright and Parker, 2004]. For simplicity we assume that equation (21) is applicable throughout the water column and integrate to find the depthaveraged flow velocity U ¼ 1 H Z H z 0 z 0 u * k ln z dz: z 0 ð22þ For the following calculations we set z 0 = nd/30 with the empirical coefficient n = 3 [e.g., Kamphius, 1974]. To hold the hydraulic conditions constant for D = 60 mm and D = 1 mm, we evaluate the roughness using D = 60 mm for both cases. This is done to simplify comparison. We suspect, however, that this might be an inaccurate parameterization of the hydraulic roughness in natural bedrock streams where the bed is only partially covered with sediment. Furthermore, roughness might be dominated by the banks, immobile boulders, or sculpted forms on the bed [Finnegan et al., 2007; Johnson and Whipple, 2007; Yager et al., 2007]. [26] The resulting velocity profile for the representative conditions of the South Fork Eel River using equation (21) are shown in Figure 1. The depth-averaged velocity is calculated from equation (22) to be U = 2.2 m/s (Table 1). 4.2. Bed Load Transport Capacity, Layer Height, Concentration, and Velocity [27] Many equations exist for the bed load transport capacity. Here, we use the relation of Fernandez Luque and van Beek [1976]: q bc ¼ 5:7 RgD 3 1=2 3=2: t* t *c ð23þ The sediment transport capacity for the two representative cases is found to be 1.0 10 3 m 2 /s and 3.8 10 3 m 2 /s for the 60-mm gravel and the 1-mm sand, respectively (Table 1). [28] The depth-averaged bed load velocity and layer height are given as empirical expressions by Sklar and Dietrich [2004] derived from several different bed load studies. The best fit relationships are U b ¼ 1:56ðRgDÞ 1=2 t 0:56 * 1 ð24þ t *c 5of18

and H b ¼ 1:44D t 0:50 * 1 : ð25þ t *c The bed load velocities and layer heights for the two representative cases are found to be U b = 1.26 m/s and H b = 72.3 mm for the 60-mm gravel, and U b = 2.6 m/s and H b = 14.5 mm for the 1-mm sand (Table 1). For the sand, equation (24) predicts a bed load velocity that is greater than the depth averaged fluid velocity. The high transport stage for the sand (t * /t *c = 102) is beyond the range of empirical data used to formulate equation (24). At large transport stages, particle velocities instead approach the fluid velocity [e.g., Bennett et al., 1998]. To account for this effect, we set U b = U where equation (24) predicts U b > U. Likewise, in rare cases with large transport stages, large channel slopes, and small flow depths, the empirical equation (25) predicts a bed load layer height (i.e., a saltation hop height) that is greater than the flow depth. In reality, under these conditions the bed load layer likely occupies the entire depth of flow. Therefore, where this occurs we set H b = H. Using these expressions, the near-bed concentration of particles (equation (18)) is found to be 0.0089 and 0.0151 for the 60-mm gravel and the 1-mm sand, respectively (Table 1). 4.3. Vertical Structure of Suspended Load [29] To evaluate the erosion rate, the vertical structure of the suspended sediment load must be known. Here we use the most widely accepted expression for the vertical profile of suspended sediment, Rouse s [1937] equation ð1 z c ¼ c z Þ=z P z b ; ð26þ ð1 z b Þ=z b where z z = z/h, z b = H b /H, and P = w st /bku * is the Rouse parameter (Figure 1). To arrive at equation (26), Rouse balanced the entrainment and settling flux of suspended sediment, and scaled the entrainment flux as a diffusive process using a parabolic eddy viscosity profile for steady, uniform flow n T ¼ bu * kzð1 z=hþ: ð27þ The coefficient b is typically thought to be a constant of order unity and accounts for any differences between the diffusivity of momentum and sediment. [30] As discussed above for the logarithmic velocity profile, several authors have argued that the Rouse profile should not apply because equation (27) is only applicable to the lower 10 20% of the water column. Nonetheless, experimental data support use of the Rouse equation throughout the water column, with b ranging from approximately 0.5 to 3 [Bennett et al., 1998; Graf and Cellino, 2002; Nezu and Azuma, 2004; Wren et al., 2004; Muste et al., 2005]. Because of the present uncertainty in the value of b, we assume that b = 1 in the following calculations. [31] To apply equation (26), the near-bed concentration c b is calculated from equation (18), where the integral relating suspended sediment flux to the bulk parameters of the flow (c) can be found from equations (17), (21), and (26) as c ¼ 1 UH Z H H b wst ð1 z z Þ=z ku z * u * ð1 z b Þ=z b k ln z dz: z 0 ð28þ The resulting concentration profiles for the representative cases are shown in Figure 1. Because of the low transport stage, most of the 60-mm gravel is contained within the bed load layer. In contrast, a significant portion of the sediment extends above H b for the 1-mm sand. 4.4. Particle Impact Velocity [32] For saltating sediment, Sklar and Dietrich [2004] used a scaling analysis combined with their empirical fits for L b, U b, and H b to obtain an expression for the impact velocity, w i ¼ 0:8ðRgDÞ 1=2 t 0:18 * 1 1 u! 2 1=2 * : ð29þ t *c Equation (29) cannot be used in our model because the empirical data used to calibrate the equation does not extend into the suspension regime. [33] As an alternative approach, we consider impacts at the bed due to gravitational settling of particles and advection by turbulent eddies. First, we calculate the impact velocity due to gravitational settling directly from a momentum balance for a falling particle. It is important to calculate the settling velocity as a function of fall distance because large particles might not have sufficient settling distance to reach terminal velocity upon impact. The component of the particle settling velocity normal to the bed can be calculated from a balance between the forces of gravity and drag as sffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffi w s ¼ w st cos q 1 exp 3C dr f H f ; ð30þ 2r s D cos q where w st ¼ 4 1=2 RgD 3 C d w st ð31þ is the terminal settling velocity (see Appendix A). The drag coefficient C d depends on the particle Reynolds number and grain shape, and we calculate C d from the empirical formula of Dietrich [1982] for natural sediment (Corey shape factor = 0.8, Powers roundness scale = 3.5). [34] The particle velocity given by equation (30) depends on the distance over which a particle falls (H f ). In a combined bed load and suspension flow, particles are falling from all distances above the bed (z), from the top of the bed load layer to the depth of the flow (H b z H). For uniform-size sediment, the average height from which particles fall should depend on the fraction of particles that are suspended to that elevation. Therefore, the shape of the steady state concentration profile should reflect the relative 6of18

heights that particles are suspended (and therefore their fall distances). To incorporate these effects, we propose an average fall distance that is weighted by the proportion of the total near-bed sediment c b that is suspended to that height, H f ¼ 1 Z Hb z dc c b dz dz: H ð32þ If all sediment is bed load, equation (32) predicts, as expected, that all particles fall from the top of the bed load layer (i.e., H f = H b ) because we assume that sediment is uniformly mixed within the bed load layer (i.e., dc dz = 0 for z < H b ). For 60-mm gravel, H f = 79.2 mm, which is only slightly greater than the bed load layer height (H b = 72.3 mm) (Figure 1). For 1-mm sand, H f = 38.4 mm and is greater than H b = 14.5 mm, because the high transport stage for the sand results in more of the load carried above H b. [35] In addition to gravitational setting of particles, turbulent fluctuations can affect the average particle-bed impact rate by advecting particles both away from the bed (reducing the impact rate) and toward the bed (increasing the impact rate). Rigorously characterizing the temporal and spatial variability in turbulent fluctuations is beyond the scope of this paper. As a first-order approach, we assume that turbulent fluctuations follow a Gaussian distribution [e.g., Bridge and Bennett, 1992; Nezu and Nakagawa, 1993; Cheng and Chiew, 1999]. The probability density function (P) of velocity fluctuations (w 0 ) is given by! Pw ð 0 Þ ¼ pffiffiffiffiffi 1 ð exp w0 Þ 2 2p sw 2s 2 ; ð33þ w pffiffiffiffiffiffi where s w = w 02 is the standard deviation of velocity fluctuations perpendicular to the bed and the overbar denotes a time average. The standard deviation of these velocity fluctuations has been shown to be approximately equal to u * in open channel flow [Nezu and Nakagawa, 1993], which we employ here (i.e., s w = u * ). [36] To calculate the particle impact velocity, we assume that particles follow the fluid, so that equation (33) can be used to calculate the probability of fluctuations in particle velocity, as well as fluid velocity. Furthermore, we assume that inertial forces dominate near the bed so that particles impact the bed and are not swept laterally with the flow (see section 6 for discussion). With these assumptions, the average impact velocity can be found by summing the component of the gravitational settling velocity perpendicular to the bed with the turbulent velocity fluctuations (which by definition are perpendicular to the bed), and integrating over all possible values of fluctuations as w i ¼ Z 6sw w s ðw 0 þ w s ÞPdw 0 : ð34þ The upper limit of integration was chosen because it incorporates very near 100% of the positive fluctuations (Figure 2). The lower limit defines the condition w 0 + w s =0; where w 0 + w s < 0, particles are moving upward and the impact velocity and impact rate are zero. Thus, despite the fact that the Gaussian distribution is symmetrical, the mean Figure 2. Probability density function for the particle velocity normalized by one standard deviation for (a) 60-mm gravel and (b) 1-mm sand. The density functions are centered about the gravitational settling velocity (w s ) and the distribution in velocity is due to turbulent fluctuations given by equation (33). The solid thick line shows the portion of the distribution that is integrated to calculate the average impact velocity (w i ) and the effective impact velocity (w i,eff ). The dashed thick line is the portion of the distribution that is not included in the integration because only positive velocities produce impacts. impact velocity can deviate from the gravitational settling velocity because the impact velocity must be nonnegative (Figure 2). [37] The deviation of the impact velocity from the gravitational settling velocity is more important when considering that the erosion rate scales with the impact velocity cubed (equation (19)). The erosion rate depends on the cube of individual particle velocities (i.e., w 0 + w s ), however, and not the average impact velocity w i. Thus to formulate an average impact velocity that scales with the erosion rate, we define the effective impact velocity by nonlinear averaging, as 2 w i;eff ¼ 4 Z 6sw w s 3 ðw 0 þ w s Þ 3 Pdw 0 5 1=3 : ð35þ 7of18

Similar to the turbulent fluctuations, the gravitational settling velocity also could be weighted to account for the cubic dependence of erosion rate on impact velocity, rather than using the velocity for the linearly averaged fall distance calculated in equation (32). We found, however, that accounting for this has a negligible effect on the results. [38] For the gravel at t * /t *c = 1.7, the gravitational fall velocity is sufficiently large compared to the turbulent fluctuations, so that only the very tail of the distribution is within the regime w 0 + w s < 0 (shown as a thick dashed line in Figure 2a). The result is that turbulent fluctuations tend to cancel, and therefore w i w s. This notwithstanding, the minor asymmetry in the probability density function results in an average impact velocity that is slightly greater than that predicted from gravitational settling alone. This effect is enhanced for the effective impact velocity w i,eff due to the cube of the velocity fluctuations (Figure 2a). Both w i and w s are smaller than w st for the gravel because the fall distance is not sufficient for particles to reach terminal settling velocity. [39] Turbulence has a much stronger effect on the predicted impact velocities for the sand owing to the large transport stage (Figure 2b). A substantial portion of the distribution of turbulent fluctuations is within the regime w 0 + w s < 0. Because impact velocities must be positive, the distribution is truncated at w 0 + w s = 0 before integrating. This results in an asymmetric distribution, and an average impact velocity and effective impact velocity that are much greater than the gravitational settling velocity (i.e., w i,eff > w i > w s ) (Figure 2b). The fall distance is sufficient for the sand that the gravitational fall velocity is equal to the terminal settling velocity (i.e., w s = w st ). [40] The velocities calculated above are a function of transport stage for the case of particles falling from the top of the bed load layer (i.e., H f = H b ) (Figure 3). For gravitational settling (w s ), the velocity increases as the bed load layer height increases (equation (25)) until a transport stage of about 10, beyond which particles are calculated to fall at the terminal velocity. The average impact velocity w i and the effective impact velocity w i,eff are nearly equal to the gravitational settling velocity for low transport stages (t * /t *c < 10) because u * is small. However, these velocities deviate significantly from the gravitational settling velocity where w s u * < 0 because the distribution in particle velocities becomes increasingly asymmetric. The result is that w i and w i,eff are significantly greater than the terminal settling velocity for large transport stages. Note that all velocity measures calculated herein (i.e., w s, w i, and w i,eff ) converge with the predictions of the empirical equation (29) at low transport stages, which is expected since this is the regime in which it was calibrated. Equation (29) predicts an impact velocity of zero at large transport stages (i.e., u * > w st ), which contrasts with the velocity model proposed herein. 4.5. Bedrock Erosion by Total Load [41] Finally, to calculate the erosion rate, w i,eff replaces w i in equation (19) resulting in E ¼ A 1r s Y k v s 2 T qw 3 i;eff ðuhc þ U b H b Þ 1 q b q bc : ð36þ Figure 3. Calculated particle velocities relative to the terminal settling velocity (w st ) as a function of transport stage for 60-mm particles falling from the top of the bed load layer. Also shown by dashed lines is the settling velocity plus and minus one standard deviation due to turbulent fluctuations, where s w = u *. The gravitational settling velocity (w s ) was calculated from equation (30) and approaches the terminal settling velocity at large transport stages. The calculated impact velocity (w i ) and effective impact velocity (w i,eff ) deviate from w s at large transport stages where turbulence becomes significant. The impact velocity according to Sklar and Dietrich [2004] goes to zero at a transport stage of about 30. The plot would be slightly different, but qualitatively similar, for different particle sizes due to changes in the drag coefficient. Equation (36) can by nondimensionalized as E * Es 2 T ¼ r s YðgDÞ ¼ A " # 3 1 q w i;eff 1 q b : 3=2 k v ðuhc þ U b H b Þ ðgdþ 1=2 q bc ð37þ This reveals that E* is a function of the three dimensionless quantities shown in brackets: (1) the normalized sediment supply or equivalently the near-bed sediment concentration (see equation (18)), (2) the normalized effective impact velocity cubed, and (3) the relative supply of bed load. By introducing the empirical expressions proposed in section 4, E* also can be shown to be a function of particle size, transport stage, relative sediment supply (q/q bc ), and channel-bed slope (or equivalently flow depth for a given transport stage). The dependency on flow depth and channel slope was not revealed in the saltation-abrasion model (equation (6)). In the total load model, it arises because both the near-bed sediment concentration and the gravitational fall velocity are sensitive to the vertical distribution of sediment in the water column, which in turn is a function of flow depth. 5. Model Results [42] Model results are shown for the two cases, where the total load is composed of either 60-mm gravel or 1-mm 8of18

Figure 4. Log-log plot of erosion rate as a function of transport stage for 60-mm gravel and 1-mm sand. Two cases are shown for each particle size. For the first, shown by solid lines, the channel slope is S = 0.0053 and the flow depth varies with transport stage. For the second case, shown by dashed lines, the flow depth is H = 0.95 m and the channel slope varies with transport stage. For all cases, the sediment supply is 8.9 10 4 m 2 /s. The saltation-abrasion model is shown only for 60-mm gravel because it predicts near zero erosion for the 1-mm sand at all transport stages. The black circles are the conditions for the representative field case of the Eel River (Table 1). sand. The predicted erosion rates are given in millimeters per year; however, these rates are instantaneous and have not been multiplied by an appropriate intermittency factor for events that cause erosion. For the representative event of the South Fork Eel River, the instantaneous erosion rates for the gravel and sand are predicted to be 31 and 10 mm/a (Table 1), respectively. This yields an annual average erosion rate of 1.9 and 0.6 mm/a using an appropriate intermittency factor for the Eel River of 0.06 (see Sklar [2003] and Sklar and Dietrich [2004] for details). These predicted erosion rates seem reasonable given the average landscape lowering rate of 0.9 mm/a [Merritts and Bull, 1989]. [43] To explore model predictions over a wide range of parameter space, we vary sediment supply, flow depth, or channel slope for a given grain size and hold the other variables to constant values specified for the Eel River (Table 1). In addition to our total load erosion model, the predictions of the saltation-abrasion model are shown for comparison, and we set A 1 = A 2 = 0.36. The integrals in equations (22), (28), (32), (34), and (35) are solved numerically. 5.1. Effect of Transport Stage [44] For a given grain size and absolute sediment supply (Table 1), the erosion rate is a function of transport stage, which in turn is a function of channel slope and flow depth. The dependence of erosion rate on transport stage is explored here for a constant slope example (solid lines in Figure 4; S tan q = 0.0053) and a constant flow depth example (dashed lines in Figure 4; H = 0.95 m). [45] For 60-mm gravel, the total load model predicts zero erosion at transport stages t * /t *c 1.5 (Figure 4) because the transport capacity is less than the supply of sediment (Table 1), and the bed is therefore predicted to be covered with sediment. As transport stage increases, the rate of erosion increases as the bedrock becomes rapidly exposed. The rate of erosion initially peaks at t * /t *c 2.5 with an erosion rate of 70 mm/a. For larger transport stages (but smaller than t * /t *c 50) the models predict a decreasing erosion rate with transport stage (Figure 4). This is because, for a constant sediment load, more sediment is held in the upper water column (i.e., c and H b increase in equation (18)), sediment is advected over the bed at a faster rate (i.e., U and U b increase in equation (18)), and therefore the near-bed sediment concentration and the impact rate per unit bed area decrease with increasing transport stage. [46] The decrease in sediment concentration with increasing transport stage is more significant for the constant slope case as compared to the constant depth case (Figure 5). An increased flow depth, in addition to transport stage, results in a reduction in near-bed sediment because a greater suspended load can be transported (i.e., H increases equation 18). In calculating the erosion rate, however, the reduction in c b is offset by the increasing impact velocity with transport stage (Figure 3). For the constant depth case, the increased impact velocity more than compensates for the decrease in c b at large transport stages (t * /t *c > 50), resulting in an ever increasing erosion rate with transport stage for steep slopes (S > 0.15) (Figure 4). Where slope is held constant, the erosion rate decreases (but remains nonzero) with increasing transport stage. Figure 5. Log-log plot of near-bed sediment concentration as a function of transport stage for 60-mm gravel and the 1-mm sand. Two cases are shown for each particle size. For the first, shown by solid lines, the channel slope is S = 0.0053 and the flow depth varies with transport stage. For the second case, shown by dashed lines, the flow depth is H = 0.95 m and the channel slope varies with transport stage. For all cases, the sediment supply is 8.9 10 4 m 2 /s. The black circles are the conditions for the representative field case of the Eel River (Table 1). 9of18

Figure 6. Erosion rate as a function of relative sediment supply for 60-mm gravel and 1-mm sand for the same hydraulic conditions (i.e., bed shear stress, flow depth, channel slope, and flow velocity (Table 1)). This corresponds to a transport stage of 1.7 and 102 for the gravel and sand, respectively. The saltation-abrasion model is shown only for 60-mm gravel because it predicts near zero erosion for the 1-mm sand at all transport stages. The black circles are the conditions for the representative field case of the Eel River (Table 1). [47] Predictions for the 1-mm sand are qualitatively similar to the gravel (Figure 4). The bed is predicted to be covered for t * /t *c < 25 and the initial peak in erosion rate (10 mm/a) occurs at t * /t *c 100. The magnitude of erosion is smaller for the sand as compared to the gravel because of its lower gravitational settling velocity. For the constant depth case, the erosion rate again increases with transport stage for large transport stages (t * /t *c > 10 3 ) equivalent to S > 0.05. [48] The saltation-abrasion model for the 60-mm gravel is qualitatively similar to the total load model for small transport stages (Figure 4). The total load model peaks at a slightly higher erosion rate because of the different formulation of the impact velocity (i.e., equation (35) versus equation (29)). At large transport stages the saltationabrasion model differs from the total load model because it forces the erosion rate to zero at u * /w st = 1, which corresponds to t * /t *c 35. For 1-mm sand, the saltationabrasion model predicts zero erosion for almost all transport stages because there is only a narrow range in which the bed is exposed and u * /w st <1. 5.2. Effect of Sediment Supply [49] With constant values of transport stage, flow depth, and channel slope (Table 1), the saltation-abrasion model predicts a peak in erosion rate where the supply of sediment is one half the bed load transport capacity (i.e., q/q bc = 0.5) (Figure 6). The erosion rate goes to zero where the sediment supply is zero because there are no particle impacts. At high relative supply, the erosion rate also goes to zero because of bed coverage. This upper limit is q/q bc = 1 for the saltationabrasion model because all of the supplied sediment is assumed to travel as bed load (i.e., q = q b ). The total load model, however, indicates that erosion is possible where the supply exceeds the bed load capacity because some of the load is transported in suspension (Figure 6). Thus, the bed load flux q b can be less than the bed load capacity, even though the total load q is not. This effect is more pronounced for the sand than for the gravel because a greater proportion of the sediment load is traveling in suspension (because of the higher transport stage). Erosion persists for the sand until the supply is nearly double the bed load transport capacity (Figure 6). 5.3. Effect of Grain Size [50] Where sediment supply, flow depth and channel slope are set to constant values for the reference field site (Table 1), the models predict a peak in erosion rate for particle sizes of about D = 45 mm (Figure 7). The erosion rate goes to zero for larger grain sizes because the flow is not competent to transport these sizes, such that the bed is predicted to be covered with alluvium. Because of the dependence of erosion rate on gravitational settling velocity, the erosion rate also decreases for finer grain sizes. The saltation-abrasion model predicts zero erosion for sizes smaller than about 2 mm because u * /w st > 1. In contrast, the total load model predicts a finite erosion rate for all particle sizes. 5.4. Effect of Flow Depth and Channel Slope [51] In contrast to the saltation-abrasion model, the total load model is a function of flow depth, or channel slope for a given transport stage (Figure 8). Flow depth affects the erosion rate in two competing ways. On one hand, the impact rate depends on the near-bed sediment concentration, which, among other things, is a function of flow depth. For the same bed shear stress, particle size and sediment supply, a deeper flow on a smaller slope will have less sediment near the bed and a lower impact rate than a shallower flow on a steeper slope. On the other hand, for particles that do not attain Figure 7. Log-log plot of erosion rate versus grain size for a constant flow depth (H = 0.95 m), channel slope (S = 0.0053), and sediment supply (8.9 10 4 m 2 /s). The black circles are the conditions for the representative field case of the Eel River (Table 1). 10 of 18

Figure 8. Erosion rate as a function of channel slope and flow depth for the 60-mm gravel (with a constant transport stage of 1.7) and the 1-mm sand (with a constant transport stage of 102) using a constant sediment supply (8.9 10 4 m 2 /s). The saltation-abrasion model would plot as a horizontal line because it is not sensitive to the relative contributions of slope and flow depth in setting the transport stage. The black circles are the conditions for the representative field case of the Eel River (Table 1). 5.5. Contour Plots of Erosion Rate [54] To evaluate the total load model over a wide range of parameter space, Figures 9 11 show contours of erosion rate versus transport stage and relative sediment supply. The saltation-abrasion model shows a peak erosion rate at a relative sediment supply of 0.5 and a transport stage of t * /t *c 15 for both the 1-mm sand and the 60-mm gravel (Figure 9). The peak erosion rate occurs at a slightly different transport stage for the two different sediment sizes because the relationship between transport stage and the onset of suspension is a function of the drag coefficient, which is grain-size dependent [Dietrich, 1982]. The erosion rate goes to zero at high and low transport stages because of the onset of suspension and the threshold of motion, respectively. The erosion rate goes to zero at high and low relative sediment supply because of the effects of bedrock coverage and particle impact rate, respectively (see Sklar and Dietrich [2004] for a detailed discussion). [55] The contour plots of the total load erosion model are strikingly different than the model that considers only bed load (Figures 10 and 11). Like the bed load model, the terminal velocity, the particle impact velocity is larger in deeper flows because of the greater fall distance. [52] For 60-mm gravel with a constant transport stage and sediment supply, the erosion rate is nearly constant at low channel slopes, but decreases as slope increases (Figure 8). For this sediment size, the increased impact rate in shallower and steeper flows is more than compensated for by the drop in impact velocity (because of the reduced fall distance), resulting in a decrease in erosion rate with increasing slope. In contrast, finer sediment rapidly reaches terminal velocity so that changes in flow depth have little effect on impact velocity. Thus, the erosion rate for 1-mm sand is predicted to increase with increasing slope because of the greater impact rate that results from the increased nearbed sediment concentration in steeper flows with smaller flow depths (Figure 8). [53] The abrupt increase in erosion rate for the gravel at S 0.04 and H 0.2 m (Figure 8) occurs where the bed load velocity given by equation (24) is predicted to be larger than the fluid velocity (equation (22)), and therefore we set U b = U (see section 4.2). The jump in erosion rate is because the bed load velocity is predicted to increase with transport stage (regardless of flow depth), whereas U systematically decreases with increasing slope (and decreasing flow depth). This results in a heightened near-bed sediment concentration and erosion rate. The second jump in erosion rate at S 0.07 and H 0.07 m (Figure 8) is where H b = H, which again results in a heightened near-bed sediment concentration with increasing slope (and decreasing flow depth). Figure 9. Contour plots of erosion rate in millimeters per year for the saltation-abrasion model versus transport stage and relative sediment supply for (a) 60-mm gravel and (b) 1-mm sand. The dashed lines are slices through parameter space that are shown on Figures 4 and 6. The black circles are the conditions for the representative field case of the Eel River (Table 1). 11 of 18